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Multiaspect classification of airborne targets via physics-basedHMMs and matching pursuits

机译:通过基于物理的HMM和匹配追踪对机载目标进行多方面分类

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Wideband electromagnetic fields scattered from N distinct target-sensor orientations are employed for classification of airborne targets. Each of the scattered waveforms is parsed via physics-based matching pursuits, yielding N feature vectors. The feature vectors are submitted to a hidden Markov model (HMM), each state of which is characterized by a set of target-sensor orientations over which the associated feature vectors are relatively stationary. The N feature vectors extracted from the multiaspect scattering data implicitly sample N states of the target (some states may be sampled more than once), with the state sequence modeled statistically as a Markov process, resulting in an HMM due to the “hidden” or unknown target orientation. In the work presented here, the state-dependent probability of observing a given feature vector is modeled via physics-motivated linear distributions, in lieu of the traditional Gaussian mixtures applied in classical HMMs. Further, we develop a scheme that yields autonomous definitions for the aspect-dependent HMM states. The paradigm is applied to synthetic scattering data for two simple targets
机译:从N个不同的目标传感器方向散射的宽带电磁场用于对机载目标进行分类。每个散射波形通过基于物理的匹配追踪进行解析,产生N个特征向量。特征向量被提交给隐马尔可夫模型(HMM),其每个状态的特征是一组目标传感器方向,相关特征向量在该目标传感器方向上相对固定。从多角度散射数据中提取的N个特征向量隐式采样了目标的N个状态(某些状态可能被采样了多次),状态序列被统计为马尔可夫过程,由于“隐藏”或“隐性”目标方向未知。在这里提出的工作中,通过物理驱动的线性分布来建模观察给定特征向量的状态相关概率,以代替应用于经典HMM的传统高斯混合。此外,我们开发了一种方案,该方案可产生与方面相关的HMM状态的自主定义。该范例适用于两个简单目标的合成散射数据

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